人工智能和物联网在口腔癌检测中的应用前景

Amol S. Dhane
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引用次数: 0

摘要

本信对人工智能(AI)和物联网(IoT)在改善口腔癌检测方面的意义进行了认真评估。口腔癌是全球关注的一大健康问题,往往在晚期才被发现,导致预后不良。人工智能技术,特别是机器学习和深度学习模型,在准确评估数字图像和组织病理学切片、协助医生进行风险评估和早期识别方面显示出巨大的前景。此外,物联网设备使实时监测和监控成为可能,这些设备可收集重要的患者数据,用于早期识别口腔癌的迹象。此外,图像处理算法的发展也提高了诊断的性能和效率,有助于避免延误诊断。大数据分析和唾液生物标志物的应用加强了早期检测措施。为了与口腔癌作斗争,除其他人工智能应用外,各种人工智能和物联网战略也在研究之中。虽然发展令人鼓舞,但除非解决验证、标准化、数据隐私和监管合规等问题,否则临床实践中的应用不会成功。医疗保健利益相关方共同努力,就能促进创新、验证技术并克服当前的障碍。为了降低口腔癌的发病率,未来的发展方向包括创建多模态成像方法,并将其纳入人群筛查计划。通过利用人工智能和物联网,我们可以实现口腔癌的早期检测、个性化治疗和预防,最终改善患者的治疗效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The promise of artificial intelligence and internet of things in oral cancer detection

The significance of artificial intelligence (AI) and the internet of things (IoT) in improving oral cancer detection is critically assessed in this letter. Oral cancer is a major worldwide health concern that is frequently detected at a late stage, resulting in a poor prognosis. AI techniques, in particular machine learning and deep learning models, show great promise for accurately assessing digital images and histopathology slides, assisting physicians in risk assessment and early identification. Furthermore, real-time monitoring and surveillance are made possible by IoT-enabled devices, which gather important patient data for the early identification of indications of oral cancer. Furthermore, the performance and efficacy of diagnosis have been improved by developments in image processing algorithms, which helps to avoid delayed diagnosis. Big data analytics and the application of salivary biomarkers enhance early detection initiatives. To battle oral cancer, a variety of AI and IoT strategies are being investigated, in addition to other AI uses. Although encouraging developments, application in clinical practice will not be successful unless issues with validation, standardization, data privacy and regulatory compliance are resolved. Working together, healthcare stakeholders can promote innovation, validate techniques and get over current obstacles. To reduce the prevalence of oral cancer, future directions include the creation of multimodal imaging methods and their incorporation into population-based screening initiatives. We can move closer to early detection, individualized therapy and prevention of oral cancer by utilizing AI and IoT, which will ultimately improve patient outcomes.

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